Bayesian Sequential Inference for Dynamic Regression Models

  • Munezero, Parfait
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Publication date
January 2020
Publisher
Stockholm : Department of Statistics, Stockholm University

Abstract

Many processes evolve over time and statistical models need to be adaptive to change. This thesis proposes flexible models and statistical methods for inference about a data generating process that varies over time. The models considered are quite general dynamic predictive models with parameters linked to a set of covariates via link functions. The dynamics can arise from time-varying regression coefficients and from changes in the link function over time. The covariates can be time-varying and may also have incomplete information. An efficient Bayesian inference methodology is developed for analyzing the posterior of dynamic regression models sequentially, with a particular focus on online learning and real-time prediction. The core infer...

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